--- base_model: onekq-ai/OneSQL-v0.1-Qwen-7B tags: - text-generation-inference - transformers - qwen2 - gguf license: apache-2.0 language: - en --- # Introduction This model is the GGUF version of [OneSQL-v0.1-Qwen-7B](https://huggingface.co/onekq-ai/OneSQL-v0.1-Qwen-7B). You can also find it on [Ollama](https://ollama.com/onekq/OneSQL-v0.1-Qwen). # Performances The self-evaluation EX score of the original model is **56.19** (compared to **63.33** by the 32B model on the [BIRD leaderboard](https://bird-bench.github.io/). Below is the self-evaluation results for each quantization. | Quantization |EX score| |------------|------| | Q2_K | 29.79 | | Q3_K_S | 36.31 | | Q3_K_M | 39.24 | | Q3_K_L | 40.14 | | Q4_1 | 39.06 | | Q4_K_S | 42.69 | | **Q4_K_M** | **43.95** | | Q5_0 | 43.84 | | Q5_1 | 41.00 | | Q5_K_S | 42.20 | | Q5_K_M | 42.07 | | Q6_K | 41.68 | | Q8_0 | 41.09 | # Quick start To use this model, craft your prompt to start with your database schema in the form of **CREATE TABLE**, followed by your natural language query preceded by **--**. Make sure your prompt ends with **SELECT** in order for the model to finish the query for you. There is no need to set other parameters like temperature or max token limit. ```sh PROMPT="CREATE TABLE students ( id INTEGER PRIMARY KEY, name TEXT, age INTEGER, grade TEXT ); -- Find the three youngest students SELECT " ollama run onekq-ai/OneSQL-v0.1-Qwen:32B-Q4_K_M "$PROMPT" ``` The model response is the finished SQL query without **SELECT** ```sql * FROM students ORDER BY age ASC LIMIT 3 ``` # Caveats * The performance drop from the original model is due to quantization itself, and the lack of beam search support in llama.cpp framework. Use at your own discretion. * The Q4_0 quantization suffers from repetitive output token, hence is not recommended for usage.